基于pso的动态带宽再分配神经网络[电力系统通信]

A. Elgallad, M. El-Hawary, W. Phillips, A. Sallam
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引用次数: 7

摘要

高速网络需要在平均速率和峰值速率之间为每个连接分配固定带宽。大多数情况下,分配的带宽不能处理接收到的所有流量,并造成流量丢失。本文介绍了一种避免网络拥塞的新算法。该算法主要考虑在线测量网络中每个缓冲区的相对内容。一个自适应的带宽重新分配是简单地通过调用一个进化的神经网络来完成的。在输入层和输出层固定在一个节点(相对内容比和带宽比)的情况下,使用粒子群优化器(PSO)对隐藏层的权重矩阵和节点数进行调整。将结果与静态带宽分配进行了流量下降次数的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PSO-based neural network for dynamic bandwidth re-allocation [power system communication]
A high-speed network needs to assign a fixed bandwidth for each connection some where between its mean and peak rates. Most of the time this assigned bandwidth will not handle all the traffic received and creates traffic loss. This paper introduces a new algorithm to avoid network congestion. The algorithm mainly considers online measurements of the relative contents of each buffer in the network. An adaptive bandwidth reallocation is simply done by recalling an evolved neural network. A particle swarm optimizer (PSO) is used to adjust both weights matrix and the number of nodes for the hidden layer providing that input and output layers are fixed at one node (ratio of relative contents and bandwidth proportion respectively). The results are compared with static bandwidth allocation in terms of number of traffic drop.
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